历史结构化文档中嵌套命名实体识别方法的基准研究

Solenn Tual, N. Abadie, J. Chazalon, Bertrand Dum'enieu, Edwin Carlinet
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引用次数: 1

摘要

命名实体识别(NER)是从数字化历史文献中创建结构化数据的关键步骤。传统的NER方法处理平面命名实体,而实体通常是嵌套的。例如,邮政地址可能包含街道名称和号码。这项工作比较了三种嵌套的NER方法,包括使用基于transformer的体系结构的两种最先进的方法。我们介绍了一种基于联合标签和错误语义加权的基于transformer的新方法,并在19世纪巴黎贸易目录的集合上进行了评估。我们评估了关于监督微调、带噪声文本的无监督预训练和IOB标记格式变化的影响的方法。我们的结果表明,虽然嵌套NER方法可以直接提取结构化数据,但它们不能从训练期间提供的额外知识中获益,并且在平面实体上达到与基本方法相似的性能。尽管所有3种方法在F1得分方面表现良好,但联合标记最适合于分层结构的数据。最后,我们的实验揭示了IO标注格式在这类数据上的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Benchmark of Nested Named Entity Recognition Approaches in Historical Structured Documents
Named Entity Recognition (NER) is a key step in the creation of structured data from digitised historical documents. Traditional NER approaches deal with flat named entities, whereas entities often are nested. For example, a postal address might contain a street name and a number. This work compares three nested NER approaches, including two state-of-the-art approaches using Transformer-based architectures. We introduce a new Transformer-based approach based on joint labelling and semantic weighting of errors, evaluated on a collection of 19 th-century Paris trade directories. We evaluate approaches regarding the impact of supervised fine-tuning, unsupervised pre-training with noisy texts, and variation of IOB tagging formats. Our results show that while nested NER approaches enable extracting structured data directly, they do not benefit from the extra knowledge provided during training and reach a performance similar to the base approach on flat entities. Even though all 3 approaches perform well in terms of F1 scores, joint labelling is most suitable for hierarchically structured data. Finally, our experiments reveal the superiority of the IO tagging format on such data.
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